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1 Lesson 12 Networks / Systems Biology
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2 Systems biology Not only understanding components! 1.System structures: the network of gene interactions and the mechanisms that modulate intracellular and multicellular structures. 2.System dynamics. How a system behaves over time under various conditions.
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3 What is a network?
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4 Networks Networks represent relations among different elements node edge
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5 Social networks Nodes: individual people Edges: social interactions
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6 Cellular molecular networks Nodes: molecules Edges: interactions
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7 Signal transduction pathway
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8 Transcriptional networks
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9 Protein-protein interaction (PPI) networks Yeast PPI network
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10 Defining network (graph) properties
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11 Directed and non directed networks Non directed network Directed network
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12 Degree of a node The degree (connectivity) of a node is defined as the number of (direct) neighbors The degree of c-Jun is 12
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13 Random networks: most nodes have a similar degree
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14 Most networks in real life do not behave like random networks! Barabasi and Albert, Nature Reviews 2004 Scale free networks: characterized by a small number of hubs, yet most nodes have 1-2 links only. Hubs: highly connected (large degree) nodes
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15 Scale-free networks World-Wide Web Citation distribution Cellular-molecular networks Social networks
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16 “… here we analyse the sexual behaviour of … individuals to reveal the mathematical features of sexual- contact network. ” The result: the network is also scale-free. This implies that “ strategic targeting of safe-sex education campaigns to those individuals with a large number of partners may significantly reduce the propagation of sexually transmitted diseases. ”
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17 Robustness (and sensitivity) of scale-free networks What happens when you “ damage ” a node in the network? Most nodes: will affect very few other nodes Hubs: will have a serious effect
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18 Robustness (and sensitivity) of scale-free networks Lethal Non-lethal Slow-growth Unknown Knockout effect: Positive correlation between connectivity and lethality
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19 Error and attack tolerance of complex networks Tolerance: “ even when as many as 5% of the nodes fail, the communication between the remaining nodes in the network is unaffected ”
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20 Attacking a scale-free network Hackers will attack hubs (yahoo, google … ) Parasites will attack hubs (anti-apoptotic proteins) Cancer: attacking the p53 transcription factor
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21 Mean path length Length (distance) between 2 nodes is the number of edges along the shortest path between these nodes
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22 “ Small world ” : average mean path length in social network = 6! “ 6 degrees of separation in human relations ” My colleague ’ s friend ’ s uncle ’ s neighbor ’ s wife ’ s boss …
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23 “ Small world ” in biological networks Most biological networks are ultra-small For example: 3 to 4 reactions connect most metabolite pairs
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24 Network motifs
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26 Sub-networks in the whole network, composed of 3-4 nodes 13 types of 3-node directional sub- networks: 199 type of 4-node networks Network motif
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27 Are real networks enriched for specific motifs? Enrichment: Do we see motif 13 more than expected in a certain network What is expected? Compare to a random graph with the same number of nodes and edges
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28 Transcription network of E. coli Consistent enrichment for two motifs:
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29 Comparison with transcription factor network of S. cerevisiae Again!
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30 Comparison with neuronal network of C. elegans Again!!!
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31 Comparison with network of electronic circuits Yet again …
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32 Compared to other biological and technological networks Technological World Wide Web Electronic circuit Biological Food web (predator -prey) Synapses in neurons Transcription
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33 Information processing Energy flow Information processing
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34 What is the functional meaning of these motifs? The feed-forward loop was studied in- depth in E. coli
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35 The feed-forward loop The feed-forward loop was studied in-depth in the E. coli transcription factor (TF) network Two TFs (X,Y) which regulate one gene (Z)
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36 AND or OR gate X and Y are transcription factors of Z Two possibilities: X Y Z AND X Y Z OR Only one is necessary to operate Z Both are necessary to operate Z
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37 What is the functional meaning of these motifs? Allow robustness to small fluctuations of outside signals X Y Z AND Slow turn-on, fast turn-off Activating signal (e.g. cAMP in the arabinose system)
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38 What is the functional meaning of these motifs? Allow robustness to small fluctuations of outside signals X Y Z AND Slow turn-on: first activate X and then Y Fast turn-off: if X is shut off, then everything is off Activating signal (e.g. cAMP in the arabinose system)
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39 What is the functional meaning of these motifs? The opposite in the OR system – robustness to shut-down X Y Z OR Fast turn-on: if X is active then Z is on Slow turn-off: both X & Y have to be shut down to turn Z off Activating signal (e.g. FlhDC in the flagella system of E.coli)
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40 Protein networks in diseases Ideker and Sharan, 2008. Genome Research 18:644-652
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41 Protein networks in cancer High connectivity of up-regulated cancer genes
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42 Protein networks in other diseases Low connectivity of most other disease- related genes Cancer has a unique mode of action Bias in our knowledge on cancer genes
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43 Prediction of disease-related genes and sub-networks “ Know thy neighbors ” : search for interactors of know disease-creating genes
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44 A protein interaction network for Huntington disease
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45 Summary
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46 Bioinformatics is the future! Cool! Interesting! Futuristic!
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47 Additional courses Perl programming for biology (2 nd semester) Molecular Evolution Computational Systems Biology (CS) … and more …
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